Optimal Sample Size Selection for Continuous In-Process Data using a Quality Assessment
Resumen
In the statistical test, the evidence which
can permit the rejection of the null hypothesis and
make a conclusion that the program has an effect is
done. There is always a difference in any groups
which takes part in the statistical tests. The power
of the study normally refers to the probability that
the researcher will find the difference which exists
between the groups taking part in the statistical
tests especially when it exists. It simply means that
it is the ability to fail to accept the null hypothesis
when it is required so. The performance of the size
estimation and the power analysis is very
significant in the experimental design since when
there is no these computation, the size of the sample
may be too low or high. In the case where the
sample size is too low, the experiment process will
not provide the valid and reliable results to the
investigated questions. In the situation where the
sample size is too large, the wastage of time and
other resources will be manifest with a very smaller
gain. Therefore, the main purpose for the size
estimation and power analysis is to provide the
scientific methods which can be used to give an
answer to the questions accurately, quickly and
very easily.
Key Terms – Continuous In-process Data,
Discrete Data, Process Sampling, Sample Power
Analysis, Sample Size.